New Determination of Fundamental Properties of Palomar 5 Using Deep DESI Imaging Data
Xin Xu (1, 2), Hu Zou (1), Xu Zhou (1), Jundan Nie (1), Zhimin Zhou, (1), Jun Ma (1, 2), Tianmeng Zhang (1), Jiali Wang (1), Suijian Xue (1), ((1) Key Laboratory of Optical Astronomy, National Astronomical, Observatories, Chinese Academy of Sciences, Beijing, China

TL;DR
This study uses deep DESI imaging data to precisely determine the fundamental properties of the globular cluster Palomar 5, including its structure, stellar population, and mass functions, providing insights into its dynamical state and evolution.
Contribution
It presents new, detailed measurements of Palomar 5's properties using deeper imaging data and Bayesian analysis, improving understanding of its structure and stellar populations.
Findings
Derived core and tidal radii, and concentration parameter of Palomar 5.
Determined age, metallicity, reddening, and distance modulus with high precision.
Identified spatial mass segregation and confirmed the cluster as a relaxed system.
Abstract
The legacy imaging surveys for the Dark Energy Spectroscopic Instrument project provides multiplecolor photometric data, which are about 2 mag deeper than the SDSS. In this study, we redetermine the fundamental properties for an old halo globular cluster of Palomar 5 based on these new imaging data, including structure parameters, stellar population parameters, and luminosity and mass functions. These characteristics, together with its tidal tails, are key for dynamical studies of the cluster and constraining the mass model of the Milky Way. By fitting the King model to the radial surface density profile of Palomar 5, we derive the core radius of = 2.96' 0.11', tidal radius of = 17.99' 1.49', and concentration parameter of = 0.78 0.04. We apply a Bayesian analysis method to derive the stellar population properties and get an age of 11.508 0.027…
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